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A network model for prediction of temperature distribution in data centers

机译:预测数据中心温度分布的网络模型

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摘要

We propose a novel network model for real-time prediction of temperature distribution in a data center so as to allow energy-efficient task assignment and facility management. We model various physical relationships in the data center as a network, including heat movements caused by airflow and heat generation by servers. Since changes in temperature distribution depend on physical properties of the data center such as equipment locations and server types, model parameters (connection weights in the network) that characterize relationship of nodes are determined by a machine learning technique using actual data center operation data. The proposed method provides prediction results in a shorter time than traditional methods such as model based on computational fluid dynamics and potential flow model, while maintaining prediction accuracy. We evaluate the performance of the proposed model through comparison with actual data from our experimental data center. The evaluation indicates that the proposed model can predict 10-minute future temperature distributions in 60 places in 3.3 ms, with a root mean square error of 0.49 degrees.
机译:我们提出了一种新颖的网络模型,用于实时预测数据中心的温度分布,从而实现节能任务分配和设施管理。我们将数据中心中的各种物理关系建模为一个网络,包括由气流引起的热量移动和服务器产生的热量。由于温度分布的变化取决于数据中心的物理属性(例如设备位置和服务器类型),因此表征节点关系的模型参数(网络中的连接权重)是通过使用实际数据中心操作数据的机器学习技术确定的。与传统方法(例如基于计算流体动力学和潜在流动模型的模型)相比,所提出的方法可在更短的时间内提供预测结果,同时保持预测精度。我们通过与实验数据中心的实际数据进行比较来评估所提出模型的性能。评估表明,所提出的模型可以在3.3毫秒内预测60分钟内10分钟的未来温度分布,均方根误差为0.49度。

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